Choi Jungjun, Yuan Ming
Department of Statistics, Columbia University.
J Am Stat Assoc. 2024 Sep 20. doi: 10.1080/01621459.2024.2380105.
This paper develops an inferential framework for matrix completion when missing is not at random and without the requirement of strong signals. Our development is based on the observation that if the number of missing entries is small enough compared to the panel size, then they can be estimated well even when missing is not at random. Taking advantage of this fact, we divide the missing entries into smaller groups and estimate each group via nuclear norm regularization. In addition, we show that with appropriate debiasing, our proposed estimate is asymptotically normal even for fairly weak signals. Our work is motivated by recent research on the Tick Size Pilot Program, an experiment conducted by the Security and Exchange Commission (SEC) to evaluate the impact of widening the tick size on the market quality of stocks from 2016 to 2018. While previous studies were based on traditional regression or difference-in-difference methods by assuming that the treatment effect is invariant with respect to time and unit, our analyses suggest significant heterogeneity across units and intriguing dynamics over time during the pilot program.
本文针对缺失非随机且无需强信号要求的矩阵补全问题,构建了一个推理框架。我们的研究基于这样一个观察结果:如果与面板规模相比,缺失条目的数量足够少,那么即使缺失是非随机的,也能够对其进行较好的估计。利用这一事实,我们将缺失条目划分为较小的组,并通过核范数正则化对每个组进行估计。此外,我们还表明,通过适当的偏差校正,即使对于相当弱的信号,我们提出的估计量也是渐近正态的。我们的工作受到了近期关于最小报价单位试点计划研究的启发,该计划是美国证券交易委员会(SEC)在2016年至2018年期间进行的一项实验,旨在评估扩大最小报价单位对股票市场质量的影响。虽然之前的研究基于传统回归或差分法,假设处理效应在时间和单位上是不变的,但我们的分析表明,在试点计划期间,各单位之间存在显著的异质性,且随着时间推移呈现出有趣的动态变化。